College of Food Science and Technology, Nanjing Agricultural University, No. 1 Weigang Road, Nanjing 210095, P. R. China.
Department of Biological Systems Engineering, Washington State University, 208 L.J. Smith Hall, Pullman, WA 99164-6120, USA.
Sci Rep. 2016 Nov 29;6:37994. doi: 10.1038/srep37994.
To investigate the potential of conventional and deep learning techniques to recognize the species and distribution of mould in unhulled paddy, samples were inoculated and cultivated with five species of mould, and sample images were captured. The mould recognition methods were built using support vector machine (SVM), back-propagation neural network (BPNN), convolutional neural network (CNN), and deep belief network (DBN) models. An accuracy rate of 100% was achieved by using the DBN model to identify the mould species in the sample images based on selected colour-histogram parameters, followed by the SVM and BPNN models. A pitch segmentation recognition method combined with different classification models was developed to recognize the mould colony areas in the image. The accuracy rates of the SVM and CNN models for pitch classification were approximately 90% and were higher than those of the BPNN and DBN models. The CNN and DBN models showed quicker calculation speeds for recognizing all of the pitches segmented from a single sample image. Finally, an efficient uniform CNN pitch classification model for all five types of sample images was built. This work compares multiple classification models and provides feasible recognition methods for mouldy unhulled paddy recognition.
为了研究传统和深度学习技术在识别未去壳稻谷中霉菌种类和分布的潜力,对五个种类的霉菌进行接种和培养,并采集样本图像。使用支持向量机(SVM)、反向传播神经网络(BPNN)、卷积神经网络(CNN)和深度置信网络(DBN)模型构建了霉菌识别方法。基于选定的颜色-直方图参数,使用 DBN 模型对样本图像中的霉菌种类进行识别,准确率达到 100%,其次是 SVM 和 BPNN 模型。开发了一种结合不同分类模型的音高分割识别方法,以识别图像中的霉菌菌落区域。SVM 和 CNN 模型对音高分类的准确率约为 90%,高于 BPNN 和 DBN 模型。CNN 和 DBN 模型在识别单个样本图像分割出的所有音高时计算速度更快。最后,建立了一个适用于所有五种类型样本图像的高效统一 CNN 音高分类模型。这项工作比较了多种分类模型,并为识别霉变未去壳稻谷提供了可行的识别方法。